Authors
Francesco Beneventi, Andrea Bartolini, Carlo Cavazzoni, Luca Benini
Publication date
2017/3/27
Conference
Design, Automation & Test in Europe Conference & Exhibition (DATE), 2017
Pages
1038-1043
Publisher
IEEE
Description
Exascale computing represents the next leap in the HPC race. Reaching this level of performance is subject to several engineering challenges such as energy consumption, equipment-cooling, reliability and massive parallelism. Model-based optimization is an essential tool in the design process and control of energy efficient, reliable and thermally constrained systems. However, in the Exascale domain, model learning techniques tailored to the specific supercomputer require real measurements and must therefore handle and analyze a massive amount of data coming from the HPC monitoring infrastructure. This becomes rapidly a “big data” scale problem. The common approach where measurements are first stored in large databases and then processed is no more affordable due to the increasingly storage costs and lack of real-time support. Nowadays instead, cloud-based machine learning techniques aim to …
Total citations
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Scholar articles
F Beneventi, A Bartolini, C Cavazzoni, L Benini - Design, Automation & Test in Europe Conference & …, 2017